Pinned Repositories
aio-pika
AMQP 0.9 client designed for asyncio and humans.
aws_s3_uploader
aws_s3_uploader
couchbase_manager
some scripts to manage couchbase
covid19-ai
The 2019 novel coronavirus (COVID-19) presents several unique features. While the diagnosis is confirmed using polymerase chain reaction (PCR), infected patients with pneumonia may present on chest X-ray and computed tomography (CT) images with a pattern that is only moderately characteristic for the human eye. Bilateral multiple lobular and subsegmental areas of consolidation can be observed in COVID-19 patients. The following model aims to present a neural network aimed to detect COVID-19 cases through chest X-Rays. While a neural network to detect COVID-19 cases has been published, the following model has a much higher accuracy. Out model uses a sample of 100 COVID-19 positive cases and 100 COVID-19 negative cases, and has an accuracy of 91% . Of the true positive patients, the model had an accuracy of 100%, and of the true negative patients, the model had an accuracy of 80%. Given the fact that the data is limited, the model can be improved in the near future for rapid diagnosis of COVID-19 cases with an extremely low rate of false positives. While the model may still be in an initial phase of development, it can be put to practical use soon with enough training and accuracy.
japronto
Screaming-fast Python 3.5+ HTTP toolkit integrated with pipelining HTTP server based on uvloop and picohttpparser.
mysql_too_large
how to resolve mysql space too large
redis_analysis
science_flow
science work flow
tornado_web
An efficient web framework
zvt
write trading algorithm once, run it on all markets
Qin-BL's Repositories
Qin-BL/japronto
Screaming-fast Python 3.5+ HTTP toolkit integrated with pipelining HTTP server based on uvloop and picohttpparser.
Qin-BL/mysql_too_large
how to resolve mysql space too large
Qin-BL/redis_analysis
Qin-BL/science_flow
science work flow
Qin-BL/tornado_web
An efficient web framework
Qin-BL/zvt
write trading algorithm once, run it on all markets
Qin-BL/aio-pika
AMQP 0.9 client designed for asyncio and humans.
Qin-BL/aws_s3_uploader
aws_s3_uploader
Qin-BL/couchbase_manager
some scripts to manage couchbase
Qin-BL/covid19-ai
The 2019 novel coronavirus (COVID-19) presents several unique features. While the diagnosis is confirmed using polymerase chain reaction (PCR), infected patients with pneumonia may present on chest X-ray and computed tomography (CT) images with a pattern that is only moderately characteristic for the human eye. Bilateral multiple lobular and subsegmental areas of consolidation can be observed in COVID-19 patients. The following model aims to present a neural network aimed to detect COVID-19 cases through chest X-Rays. While a neural network to detect COVID-19 cases has been published, the following model has a much higher accuracy. Out model uses a sample of 100 COVID-19 positive cases and 100 COVID-19 negative cases, and has an accuracy of 91% . Of the true positive patients, the model had an accuracy of 100%, and of the true negative patients, the model had an accuracy of 80%. Given the fact that the data is limited, the model can be improved in the near future for rapid diagnosis of COVID-19 cases with an extremely low rate of false positives. While the model may still be in an initial phase of development, it can be put to practical use soon with enough training and accuracy.
Qin-BL/gitlab
Ruby wrapper and CLI for the GitLab REST API
Qin-BL/kernel
BSP kernel source
Qin-BL/paperai
AI-powered literature discovery and review engine for medical/scientific papers
Qin-BL/planet
Deep Planning Network: Control from pixels by latent planning with learned dynamics
Qin-BL/power_script
Qin-BL/robot_scripts
Qin-BL/stock_analysis
stock analysis--量化分析
Qin-BL/wxcloudrun-flask
微信云托管 flask 框架模板